A computational framework for infinite-dimensional Bayesian inverse problems: Part II. Stochastic Newton MCMC with application to ice sheet flow inverse problems
Noemi Petra, James Martin, Georg Stadler, Omar Ghattas

TL;DR
This paper develops an efficient stochastic Newton MCMC method for fully nonlinear infinite-dimensional Bayesian inverse problems, demonstrated on ice sheet flow modeling, improving sampling efficiency and computational cost.
Contribution
It introduces a Hessian approximation at the MAP point reused across MCMC steps, reducing computational costs in high-dimensional Bayesian inverse problems.
Findings
The MAP-based Hessian approach converges as fast as the original method.
The proposed method is significantly cheaper than the original stochastic Newton MCMC.
It outperforms the independence sampler in convergence speed and overall cost.
Abstract
We address the numerical solution of infinite-dimensional inverse problems in the framework of Bayesian inference. In the Part I companion to this paper (arXiv.org:1308.1313), we considered the linearized infinite-dimensional inverse problem. Here in Part II, we relax the linearization assumption and consider the fully nonlinear infinite-dimensional inverse problem using a Markov chain Monte Carlo (MCMC) sampling method. To address the challenges of sampling high-dimensional pdfs arising from Bayesian inverse problems governed by PDEs, we build on the stochastic Newton MCMC method. This method exploits problem structure by taking as a proposal density a local Gaussian approximation of the posterior pdf, whose construction is made tractable by invoking a low-rank approximation of its data misfit component of the Hessian. Here we introduce an approximation of the stochastic Newton…
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